Memorias de investigación
Communications at congresses:
What Are the Parameters that Affect the Construction of a Knowledge Graph?
Year:2019

Research Areas
  • Information technology and adata processing

Information
Abstract
A large number of datasets are made publicly available on a wide range of formats. Due to interoperability problems, the construction of RDF-based knowledge graphs (KG) using declarative mapping languages has emerged with the aim of integrating heterogeneous sources in a uniform way. Although the scientific community has actively contributed with several engines to solve the problem of knowledge graph construction, the lack of testbeds has prevented reproducible benchmarking of these engines. In this paper, we tackle the problem of evaluating knowledge graph creation, and analyze and empirically study a set of variables and configurations that impact on the behaviour of these engines (e.g. data size, data distribution, mapping complexity). The evaluation has been conducted on RMLMapper and the SDM-RDFizer, two state-of-the-art engines that interpret the RDF Mapping Language (RML) and transform (semi)-structured data into RDF knowledge graphs. The results allow us to discover unknown relations between these engines that cannot be observed in other configurations.
International
Si
Congress
The 18th International Conference on Ontologies, DataBases, and Applications of Semantics
960
Place
Rodas, Grecia
Reviewers
Si
ISBN/ISSN
978-3-030-33246-4
10.1007/978-3-030-33246-4_43
Start Date
21/10/2019
End Date
25/10/2019
From page
695
To page
713
OTM: OTM Confederated International Conferences "On the Move to Meaningful Internet Systems"
Participants
  • Autor: David Chaves Fraga UPM
  • Autor: Kemele M. Endris L3S Institute, Leibniz University of Hannover
  • Autor: Enrique Iglesias University of Bonn
  • Autor: Oscar Corcho Garcia UPM
  • Autor: Maria-Esther Vidal TIB Leibniz Information Centre for Science and Technology

Research Group, Departaments and Institutes related
  • Creador: Grupo de Investigación: Ontology Engineering Group
  • Departamento: Inteligencia Artificial